核到计算:识别红米分类的最优特征集

IF 5.7 Q1 AGRICULTURAL ENGINEERING
Suma D , Narendra V G , Darshan Holla M , Shreyas , Raviraja Holla M
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引用次数: 0

摘要

现有的研究主要集中在利用现成的数据集进行白米分类,而在没有公开数据集的情况下,红米品种的自动分类在很大程度上仍未得到探索,这在农业图像处理应用方面造成了重大的研究空白。本文介绍了红米分类的研究,这是一个相对未开发的领域,没有公开的数据集,也没有对红米品种鉴定进行集中调查。本研究使用图像处理和机器学习技术,对主要在卡纳塔克邦和喀拉拉邦种植的三种不同的红米品种——乌玛、KCP-1和乔蒂进行了分类。使用从大小、形状和纹理特征中获得的7个独特特征组合来评估6个ML模型,以识别最具判别性的特征集。采用递归特征消去和反向特征消去进行特征选择,提高模型效率。采用超参数调优来优化分类性能,并采用k-fold交叉验证和统计显著性检验来评估泛化和验证模型性能差异。尺寸、形状和纹理特征的集成在所有模型中产生了最高的平均准确率,k近邻达到98.67%的准确率,支持向量机在尺寸和形状组合方面达到97.34%的准确率。研究结果强调了最优特征选择和调整对提高分类精度的重要性,有助于开发红米品种自动分类系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel to computation: identifying optimal feature set for red rice classification
While existing research focuses extensively on white rice classification with readily available datasets, automated classification of red rice varieties remains largely unexplored with no publicly available datasets, creating a significant research gap in agricultural image processing applications. This research presents a study on red rice classification, a relatively unexplored area with no prior publicly available datasets or focused investigations on red rice variety identification. This study classifies three distinct red rice varieties—Uma, KCP-1, and Jyothi—primarily cultivated in Karnataka and Kerala, using image processing and machine learning techniques. Six ML models were evaluated with seven unique feature combinations derived from size, shape, and texture characteristics to identify the most discriminative feature set. Feature selection was performed using Recursive Feature Elimination and Backward Feature Elimination to enhance model efficiency. Hyperparameter tuning was applied to optimize classification performance, and k-fold cross-validation with statistical significance testing was used to assess generalization and validate model performance differences. The integration of size, shape, and texture features yielded the highest average accuracy across the models, with K-Nearest Neighbours achieving 98.67 % accuracy and Support Vector Machine reaching 97.34 % accuracy with the size and shape combination. The findings emphasize the importance of optimal feature selection and tuning in improving classification accuracy, contributing to the development of automated classification systems for red rice varieties.
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